基于高斯混合模型的有色非高斯噪声信号估计

R. Pradeepa, G. V. Anand
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引用次数: 4

摘要

信号/噪声的非高斯性通常会导致系统性能的显著下降,这些系统是使用高斯假设设计的。因此,非高斯信号/噪声需要不同的建模和处理方法。本文讨论了被有色非高斯噪声破坏的非高斯信号的贝叶斯估计新技术。该方法基于零平均有限高斯混合模型(GMMs)来处理信号和噪声。采用自适应非因果非线性滤波技术进行估计。该方法包括根据GMM参数推导估计量,然后使用EM算法对其进行估计。该滤波器长度有限,具有计算可行性。仿真结果表明,在包括脉冲噪声在内的各种噪声条件下,与线性滤波器相比,该方法具有显著的改进。我们还声称,与仅基于过去样本的信号估计相比,使用与过去和未来样本的相关性进行信号估计可以减少均方误差。
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Estimation of Signals in Colored Non Gaussian Noise Based on Gaussian Mixture Models
Non-Gaussianity of signals/noise often results in significant performance degradation for systems, which are designed using the Gaussian assumption. So non-Gaussian signals/noise require a different modelling and processing approach. In this paper, we discuss a new Bayesian estimation technique for non-Gaussian signals corrupted by colored non Gaussian noise. The method is based on using zero mean finite Gaussian Mixture Models (GMMs) for signal and noise. The estimation is done using an adaptive non-causal nonlinear filtering technique. The method involves deriving an estimator in terms of the GMM parameters, which are in turn estimated using the EM algorithm. The proposed filter is of finite length and offers computational feasibility. The simulations show that the proposed method gives a significant improvement compared to the linear filter for a wide variety of noise conditions, including impulsive noise. We also claim that the estimation of signal using the correlation with past and future samples leads to reduced mean squared error as compared to signal estimation based on past samples only.
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